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arxiv: 2411.01027 · v1 · pith:KXRCYLSB · submitted 2024-11-01 · math.OC · eess.IV

On the Strong Convexity of PnP Regularization Using Linear Denoisers

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classification math.OC eess.IV
keywords linearconvexitymathcalproximalstrongalgorithmclassicalconvex
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In the Plug-and-Play (PnP) method, a denoiser is used as a regularizer within classical proximal algorithms for image reconstruction. It is known that a broad class of linear denoisers can be expressed as the proximal operator of a convex regularizer. Consequently, the associated PnP algorithm can be linked to a convex optimization problem $\mathcal{P}$. For such a linear denoiser, we prove that $\mathcal{P}$ exhibits strong convexity for linear inverse problems. Specifically, we show that the strong convexity of $\mathcal{P}$ can be used to certify objective and iterative convergence of any PnP algorithm derived from classical proximal methods.

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